TY - JOUR
T1 - Mandibular condyle detection using deep learning and modified mountaineering team-based optimization algorithm
AU - Abd Elaziz, Mohamed
AU - Dahou, Abdelghani
AU - Dahaba, Mushira
AU - ElBeshlawy, Dina Mohamed
AU - Ewees, Ahmed A.
AU - Al-Betar, Mohammed Azmi
AU - Aseeri, Ahmad O.
AU - Al-qaness, Mohammed A.A.
AU - Ibrahim, Rehab Ali
AU - Mousa, Arwa
N1 - Publisher Copyright:
© 2024 Faculty of Engineering, Alexandria University
PY - 2024/11
Y1 - 2024/11
N2 - The mandibular condyle is a rounded bony projection with an upper biconvex, oval surface in the axial plane. Its form differs significantly among different individuals and age groups. This study aims to address the variability in mandibular condyle morphology, which can be indicative of Temporomandibular Joint disorders (TMD). Given the clinical importance of accurate condyle characterization, we developed a novel detection method leveraging deep learning and feature selection technologies. This method explicitly employs the YOLOv8 network to initially identify the region of interest (ROI) in digital panoramic images. Subsequently, the MobileViT system extracts detailed features from these regions. We introduced a modified Mountaineering Team-Based Optimization Algorithm to refine the feature selection process, which efficiently isolates the most relevant features from the extracted set. Our experimental design involved a robust dataset of 3000 digital panoramic images, classified into four distinct morphological types: round, pointed, angled, and flat. We assessed the performance of our developed method through various metrics, focusing on its ability to detect and describe the morphology of the condyle. The results demonstrate a high capability of the model, achieving an accuracy of 81.5% in binary classification and 83.5% in multi-classification scenarios.
AB - The mandibular condyle is a rounded bony projection with an upper biconvex, oval surface in the axial plane. Its form differs significantly among different individuals and age groups. This study aims to address the variability in mandibular condyle morphology, which can be indicative of Temporomandibular Joint disorders (TMD). Given the clinical importance of accurate condyle characterization, we developed a novel detection method leveraging deep learning and feature selection technologies. This method explicitly employs the YOLOv8 network to initially identify the region of interest (ROI) in digital panoramic images. Subsequently, the MobileViT system extracts detailed features from these regions. We introduced a modified Mountaineering Team-Based Optimization Algorithm to refine the feature selection process, which efficiently isolates the most relevant features from the extracted set. Our experimental design involved a robust dataset of 3000 digital panoramic images, classified into four distinct morphological types: round, pointed, angled, and flat. We assessed the performance of our developed method through various metrics, focusing on its ability to detect and describe the morphology of the condyle. The results demonstrate a high capability of the model, achieving an accuracy of 81.5% in binary classification and 83.5% in multi-classification scenarios.
KW - Condyle morphology
KW - Feature selection
KW - Metaheuristic
KW - Mountaineering team-based optimization algorithm
UR - http://www.scopus.com/inward/record.url?scp=85198732607&partnerID=8YFLogxK
U2 - 10.1016/j.aej.2024.06.096
DO - 10.1016/j.aej.2024.06.096
M3 - Article
AN - SCOPUS:85198732607
SN - 1110-0168
VL - 107
SP - 280
EP - 297
JO - Alexandria Engineering Journal
JF - Alexandria Engineering Journal
ER -